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具有休眠的群体动态的贝叶斯系统发育动力学推断

Bayesian phylodynamic inference of population dynamics with dormancy.

作者信息

Cappello Lorenzo, 'Jack' Lo Wai Tung, Zhang Joy Z, Xu Peiyu, Barrow Daniel, Chopra Ishani, Clark Andrew G, Wells Martin T, Kim Jaehee

机构信息

Departments of Economics and Business, Universitat Pompeu Fabra, Barcelona, Spain.

Data Science Center, Barcelona School of Economics, Barcelona, Spain.

出版信息

bioRxiv. 2025 Jan 22:2025.01.19.633741. doi: 10.1101/2025.01.19.633741.

Abstract

Many organisms employ reversible dormancy, or , in response to environmental fluctuations. This life-history strategy alters fundamental eco-evolutionary forces, leading to distinct patterns of genetic diversity. Two models of dormancy have been proposed based on the average duration of dormancy relative to coalescent timescales: weak seedbank, induced by scheduled seasonality (e.g., plants, invertebrates), and strong seedbank, where individuals stochastically switch between active and dormant states (e.g., bacteria, fungi). The weak seedbank coalescent is statistically equivalent to the Kingman coalescent with a scaled mutation rate, allowing the use of existing inference methods. In contrast, the strong seedbank coalescent differs fundamentally, as only active lineages can coalesce, while dormant lineages cannot. Additionally, dormant individuals typically mutate at a slower rate than active ones. Consequently, despite the significant role of dormancy in the eco-evolutionary dynamics of many organisms, no methods currently exist for inferring population dynamics involving dormancy and associated parameters. We present a Bayesian framework for jointly inferring a latent genealogy, seedbank parameters, and evolutionary parameters from molecular sequence data under the strong seedbank coalescent. We derive the exact probability density of genealogies sampled under the strong seedbank coalescent, characterize the corresponding likelihood function, and present efficient computational algorithms for its evaluation based on our theoretical framework. We develop a tailored Markov chain Monte Carlo sampler and implement our inference framework as a package SeedbankTree within BEAST2. Our work provides both a theoretical foundation and practical inference framework for studying the population genetic and genealogical impacts of dormancy.

摘要

许多生物体为应对环境波动而采用可逆休眠,即隐生现象。这种生活史策略改变了基本的生态进化力量,导致了独特的遗传多样性模式。基于休眠平均持续时间相对于溯祖时间尺度,已提出两种休眠模型:由定时季节性诱导的弱种子库(如植物、无脊椎动物),以及个体在活跃和休眠状态之间随机切换的强种子库(如细菌、真菌)。弱种子库溯祖在统计上等同于具有缩放突变率的金曼溯祖,从而可以使用现有的推断方法。相比之下,强种子库溯祖则有根本不同,因为只有活跃谱系能够合并,而休眠谱系不能。此外,休眠个体的突变率通常比活跃个体慢。因此,尽管休眠在许多生物体的生态进化动态中发挥着重要作用,但目前尚无推断涉及休眠及相关参数的种群动态的方法。我们提出了一个贝叶斯框架,用于在强种子库溯祖模型下从分子序列数据中联合推断潜在谱系、种子库参数和进化参数。我们推导了在强种子库溯祖模型下采样谱系的精确概率密度,刻画了相应的似然函数,并基于我们的理论框架提出了用于评估的高效计算算法。我们开发了一个定制的马尔可夫链蒙特卡罗采样器,并将我们的推断框架实现为BEAST2中的一个名为SeedbankTree的软件包。我们的工作为研究休眠对种群遗传和谱系的影响提供了理论基础和实际推断框架。

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